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首页> 外文期刊>International journal of antennas and propagation >Superimposed Training-Based Channel Estimation for MIMO Relay Networks
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Superimposed Training-Based Channel Estimation for MIMO Relay Networks

机译:基于MIMO中继网络的基于培训的信道估计

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摘要

We introduce the superimposed training strategy into the multiple-input multiple-output (MIMO) amplify-and-forward (AF) one-way relay network (OWRN) to perform the individual channel estimation at the destination. Through the superposition of a group of additional training vectors at the relay subject to power allocation, the separated estimates of the source-relay and relay-destination channels can be obtained directly at the destination, and the accordance with the two-hop AF strategy can be guaranteed at the same time. The closed-form Bayesian Cramér-Rao lower bound (CRLB) is derived for the estimation of two sets of flat-fading MIMO channel under random channel parameters and further exploited to design the optimal training vectors. A specific suboptimal channel estimation algorithm is applied in the MIMO AF OWRN using the optimal training sequences, and the normalized mean square error performance for the estimation is provided to verify the Bayesian CRLB results.
机译:我们将叠加的训练策略介绍到多输入多输出(MIMO)放大和前进(AF)单向继电器网络(OWRN)中以执行目的地的各个信道估计。通过叠加在继电器的额外训练向量进行电力分配,可以直接在目的地上直接获得源 - 继电器和中继目的地通道的分离估计,并且按照两跳AF战略可以同时保证。封闭式贝叶斯Cramér-RAO下限(CRLB)被推导为在随机信道参数下估计两组平坦的MIMO通道,进一步利用以设计最佳训练向量。使用最佳训练序列在MIMO AF OWRN中应用特定的次优信道估计算法,并且提供了估计的归一化均线误差性能以验证贝叶斯CRLB结果。

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